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Gen-DFL: Decision-Focused Generative Learning for Robust Decision Making

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Decision-focused learning (DFL) integrates predictive models with downstream optimization, directly training machine learning models to minimize decision errors. While DFL has been shown to provide substantial advantages when compared to a counterpart that treats the predictive and prescriptive models separately, it has also been shown to struggle in high-dimensional and risk-sensitive settings, limiting its applicability in real-world settings. To address this limitation, this paper introduces decision-focused generative learning (Gen-DFL), a novel framework that leverages generative models to adaptively model uncertainty and improve decision quality. Instead of relying on fixed uncertainty sets, Gen-DFL learns a structured representation of the optimization parameters and samples from the tail regions of the learned distribution to enhance robustness against worst-case scenarios. This approach mitigates over-conservatism while capturing complex dependencies in the parameter space. The paper shows, theoretically, that Gen-DFL achieves improved worst-case performance bounds compared to traditional DFL. Empirically, it evaluates Gen-DFL on various scheduling and logistics problems, demonstrating its strong performance against existing DFL methods.

Prince Zizhuang Wang, Shuyi Chen, Jinhao Liang, Ferdinando Fioretto, Shixiang Zhu• 2025

Related benchmarks

TaskDatasetResultRank
Knapsack ProblemKnapsack Degree 2, 4, 6, 8 (test)
Average Relative Regret15.21
32
Portfolio OptimizationPortfolio Degree 2, 4, 6, 8 (test)
Average Relative Regret3.59
32
Shortest PathShortest Path Degree 2, 4, 6, 8 (test)
Average Relative Regret1.87
32
Energy SchedulingEnergy (test)
Average Relative Regret1.09
8
Resource AllocationCOVID Resource Allocation (test)
Average Relative Regret16.86
8
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